Methods and devices for binary entropy coding of point clouds

ABSTRACT

Methods and devices for encoding a point cloud. A bit sequence signaling an occupancy pattern for sub-volumes of a volume is coded using binary entropy coding. Contexts may be based on neighbour configuration and a partial sequence of previously-coded bits of the bit sequence. A determination is made as to whether to apply a context reduction operation and, if so, the operation reduces the number of available contexts. Example context reduction operations include reducing neighbour configurations based on shielding by sub-volumes associated with previously-coded bits, special handling for empty neighbour configurations, and statistics-based context consolidation.

CROSS-REFERENCE TO RELATED APPLICATIONS

The present application is a continuation of patent application Ser. No. 18/069,466, which is a continuation of patent application Ser. No. 17/045,771, now U.S. Pat. No. 11,620,767, which entered national phase from PCT Application no. PCT/CA2019/050399, filed Apr. 3, 2019, which claims priority to EP Application no. 18305415.4, filed Apr. 9, 2018, all of which are hereby incorporated by reference.

FIELD

The present application generally relates to point cloud compression and, in particular, to methods and devices for binary entropy coding of point clouds.

BACKGROUND

Data compression is used in communications and computer networking to store, transmit, and reproduce information efficiently. There is an increasing interest in representations of three-dimensional objects or spaces, which can involve large datasets and for which efficient and effective compression would be highly useful and valued. In some cases, three-dimensional objects or spaces may be represented using a point cloud, which is a set of points each having a three coordinate location (X, Y, Z) and, in some cases, other attributes like colour data (e.g. luminance and chrominance), transparency, reflectance, normal vector, etc. Point clouds can be static (a stationary object or a snapshot of an environment/object at a single point in time) or dynamic (a time-ordered sequence of point clouds).

Example applications for point clouds include topography and mapping applications. Autonomous vehicle and other machine-vision applications may rely on point cloud sensor data in the form of 3D scans of an environment, such as from a LiDAR scanner. Virtual reality simulations may rely on point clouds.

It will be appreciated that point clouds can involve large quantities of data and compressing (encoding and decoding) that data quickly and accurately is of significant interest. Accordingly, it would be advantageous to provide for methods and devices that more efficiently and/or effectively compress data for point clouds. Moreover, it would be advantageous to find methods and devices for coding point clouds that can be implemented using context-adaptive binary entropy coding without requiring the management of an excessive number of contexts.

BRIEF DESCRIPTION OF THE DRAWINGS

Reference will now be made, by way of example, to the accompanying drawings which show example embodiments of the present application, and in which:

FIG. 1 shows a simplified block diagram of an example point cloud encoder;

FIG. 2 shows a simplified block diagram of an example point cloud decoder;

FIG. 3 shows an example partial sub-volume and associated tree structure for coding;

FIG. 4 illustrates the recursive splitting and coding of an octree;

FIG. 5 shows an example scan pattern within an example cube from an octree;

FIG. 6 shows an example occupancy pattern within an example cube;

FIG. 7 shows, in flowchart form, one example method for encoding a point cloud;

FIG. 8 illustrates a portion of an example octree;

FIG. 9 shows an example of neighbouring sub-volumes;

FIG. 10 shows an example neighbour configuration showing occupancy among neighbouring nodes;

FIG. 11 diagrammatically shows one illustrative embodiment of a process of point cloud entropy encoding using parent-pattern-dependent context;

FIG. 12 shows an illustrative embodiment of a process of point cloud entropy encoding using neighbour-configuration-dependent context;

FIG. 13 shows, in flowchart form, one example method for decoding a bitstream of compressed point cloud data;

FIG. 14 shows an example simplified block diagram of an encoder;

FIG. 15 shows an example simplified block diagram of a decoder;

FIG. 16 shows an example Cartesian coordinate system and example rotations and/or reflections about the axes;

FIG. 17 shows classes of invariance of neighbour configuration under one or several iterations of the rotation about the Z axis;

FIG. 18 shows classes of invariance of neighbour configuration for vertical reflection;

FIG. 19 shows classes of invariance for both rotation and reflection;

FIG. 20 shows classes of invariance for under three rotations and the reflection;

FIG. 21 illustrates the equivalence between non-binary coding and cascaded binary coding for an occupancy pattern;

FIG. 22 shows in flowchart form, one example method for coding occupancy patterns in a tree-based point cloud coder using binary coding;

FIG. 23 shows a simplified block diagram of part of an example encoder;

FIG. 24 diagrammatically shows an example context reduction operation based on neighbour screening;

FIG. 25 shows another example context reduction operation based on neighbour screening; and

FIG. 26 shows one example, in flowchart form, of a method of binary coding occupancy patterns using combined context reduction.

Similar reference numerals may have been used in different figures to denote similar components.

DESCRIPTION OF EXAMPLE EMBODIMENTS

The present application describes methods of encoding and decoding point clouds, and encoders and decoders for encoding and decoding point clouds. A bit sequence signaling an occupancy pattern for sub-volumes of a volume may be coded using binary entropy coding. Contexts may be based on neighbour configuration and a partial sequence of previously-coded bits of the bit sequence. A determination is made as to whether to apply a context reduction operation and, if so, the operation reduces the number of available contexts. Example context reduction operations include reducing neighbour configurations based on shielding by sub-volumes associated with previously-coded bits, special handling for empty neighbour configurations, and statistics-based context consolidation. The reduction may be applied in advance of coding and a determination may be made during coding as to whether the circumstances for using a reduced context set are met.

In one aspect, the present application provides a method of encoding a point cloud to generate a bitstream of compressed point cloud data, the point cloud being defined in a tree structure having a plurality of nodes having parent-child relationships and that represent the geometry of a volumetric space recursively split into sub-volumes and containing the points of the point cloud, wherein occupancy of sub-volumes of a volume is indicated using a bit sequence with each bit of the bit sequence indicating occupancy of a respective sub-volume in a scan order within the volume, and wherein a volume has a plurality of neighbouring volumes, a pattern of occupancy of the neighbouring volumes being a neighbour configuration. The method includes, for at least one bit in the bit sequence of the volume, determining that a context reduction condition is met and, on that basis, selecting a reduced context set that contains fewer contexts than the product of a count of neighbour configurations and a number of previously-coded bits in the sequence; selecting, for coding the at least one bit, a context from the reduced context set based on an occupancy status of at least some of the neighbouring volumes and at least one previously-coded bit of the bit sequence; entropy encoding the at least one bit based on the selected context using a binary entropy encoder to produce encoded data for the bitstream; and updating the selected context.

In another aspect, the present application provides a method of decoding a bitstream of compressed point cloud data to produce a reconstructed point cloud, the point cloud being defined in a tree structure having a plurality of nodes having parent-child relationships and that represent the geometry of a volumetric space recursively split into sub-volumes and containing the points of the point cloud, wherein occupancy of sub-volumes of a volume is indicated using a bit sequence with each bit of the bit sequence indicating occupancy of a respective sub-volume in a scan order within the volume, and wherein a volume has a plurality of neighbouring volumes, a pattern of occupancy of the neighbouring volumes being a neighbour configuration. The method of decoding includes, for at least one bit in the bit sequence of the volume, determining that a context reduction condition is met and, on that basis, selecting a reduced context set that contains fewer contexts than the product of a count of neighbour configurations and a number of previously-coded bits in the sequence; selecting, for coding the at least one bit, a context from the reduced context set based on an occupancy status of at least some of the neighbouring volumes and at least one previously-coded bit of the bit sequence; entropy decoding the at least one bit based on the selected context using a binary entropy decoder to produce a reconstructed bit from the bitstream; and updating the selected context.

In some implementations, the context reduction condition may include determining that one or more previously-coded occupancy bits is associated with one or more respective sub-volumes positioned between the sub-volume associated with the at least one bit and the one or more of the neighbouring volumes. In some cases this may include determining that four sub-volumes associated with previously-encoded bits share a face with a particular neighbour volume.

In some implementations, the context reduction condition may include determining that at least four bit of the bit sequence have been previously coded.

In some implementations, determining that the context reduction condition is met may include determining that the pattern of occupancy of the neighbouring volumes indicates that the plurality of neighbouring volumes is unoccupied. In some of those cases, the selected reduced context set may include a number of contexts corresponding to the number of previously-coded bits in the bit sequence and, optionally, selecting the context may include selecting the context based on a sum of previously-coded bits in the bit sequence.

In some implementations, the context reduction condition may include determining that at least a threshold number of bits in the bit sequence have been previously-coded, and the reduced context set may include a look-up table mapping each possible combination of neighbour configuration and pattern of previously-coded bits in the bit sequence to the fewer contexts. In some examples, the look-up table may be generated based on an iterative grouping of available contexts into a plurality of classes on the basis of determining that a distance measurement between respective pairs of available contexts is less than a threshold value, and each class in the plurality of classes may include a respective context in the smaller set, and there may be an available contexts for each the possible combination of neighbour configuration and pattern of previously-coded bits in the bit sequence.

In some implementations, at least some of the neighbouring volumes are neighbouring volumes that share at least one face with the volume.

In a further aspect, the present application describes encoders and decoders configured to implement such methods of encoding and decoding.

In yet a further aspect, the present application describes non-transitory computer-readable media storing computer-executable program instructions which, when executed, cause one or more processors to perform the described methods of encoding and/or decoding.

In yet another aspect, the present application describes a computer-readable signal containing program instructions which, when executed by a computer, cause the computer to perform the described methods of encoding and/or decoding.

Other aspects and features of the present application will be understood by those of ordinary skill in the art from a review of the following description of examples in conjunction with the accompanying figures.

Any feature described in relation to one aspect or embodiment of the invention may also be used in respect of one or more other aspects/embodiments. These and other aspects of the present invention will be apparent from, and elucidated with reference to, the embodiments described herein.

At times in the description below, the terms “node”, “volume” and “sub-volume” may be used interchangeably. It will be appreciated that a node is associated with a volume or sub-volume. The node is a particular point on the tree that may be an internal node or a leaf node. The volume or sub-volume is the bounded physical space that the node represents. The term “volume” may, in some cases, be used to refer to the largest bounded space defined for containing the point cloud. A volume may be recursively divided into sub-volumes for the purpose of building out a tree-structure of interconnected nodes for coding the point cloud data.

In the present application, the term “and/or” is intended to cover all possible combinations and sub-combinations of the listed elements, including any one of the listed elements alone, any sub-combination, or all of the elements, and without necessarily excluding additional elements.

In the present application, the phrase “at least one of . . . or . . . ” is intended to cover any one or more of the listed elements, including any one of the listed elements alone, any sub-combination, or all of the elements, without necessarily excluding any additional elements, and without necessarily requiring all of the elements.

A point cloud is a set of points in a three-dimensional coordinate system. The points are often intended to represent the external surface of one or more objects. Each point has a location (position) in the three-dimensional coordinate system. The position may be represented by three coordinates (X, Y, Z), which can be Cartesian or any other coordinate system. The points may have other associated attributes, such as colour, which may also be a three component value in some cases, such as R, G, B or Y, Cb, Cr. Other associated attributes may include transparency, reflectance, a normal vector, etc., depending on the desired application for the point cloud data.

Point clouds can be static or dynamic. For example, a detailed scan or mapping of an object or topography may be static point cloud data. The LiDAR-based scanning of an environment for machine-vision purposes may be dynamic in that the point cloud (at least potentially) changes over time, e.g. with each successive scan of a volume. The dynamic point cloud is therefore a time-ordered sequence of point clouds.

Point cloud data may be used in a number of applications, including conservation (scanning of historical or cultural objects), mapping, machine vision (such as autonomous or semi-autonomous cars), and virtual reality systems, to give some examples. Dynamic point cloud data for applications like machine vision can be quite different from static point cloud data like that for conservation purposes. Automotive vision, for example, typically involves relatively small resolution, non-coloured, highly dynamic point clouds obtained through LiDAR (or similar) sensors with a high frequency of capture. The objective of such point clouds is not for human consumption or viewing but rather for machine object detection/classification in a decision process. As an example, typical LiDAR frames contain on the order of tens of thousands of points, whereas high quality virtual reality applications require several millions of points. It may be expected that there will be a demand for higher resolution data over time as computational speed increases and new applications are found.

While point cloud data is useful, a lack of effective and efficient compression, i.e. encoding and decoding processes, may hamper adoption and deployment. A particular challenge in coding point clouds that does not arise in the case of other data compression, like audio or video, is the coding of the geometry of the point cloud. Point clouds tend to be sparsely populated, which makes efficiently coding the location of the points that much more challenging.

One of the more common mechanisms for coding point cloud data is through using tree-based structures. In a tree-based structure, the bounding three-dimensional volume for the point cloud is recursively divided into sub-volumes. Nodes of the tree correspond to sub-volumes. The decision of whether or not to further divide a sub-volume may be based on resolution of the tree and/or whether there are any points contained in the sub-volume. A leaf node may have an occupancy flag that indicates whether its associated sub-volume contains a point or not. Splitting flags may signal whether a node has child nodes (i.e. whether a current volume has been further split into sub-volumes). These flags may be entropy coded in some cases and in some cases predictive coding may be used.

A commonly-used tree structure is an octree. In this structure, the volumes/sub-volumes are all cubes and each split of a sub-volume results in eight further sub-volumes/sub-cubes. Another commonly-used tree structure is a KD-tree, in which a volume (cube or rectangular cuboid) is recursively divided in two by a plane orthogonal to one of the axes. Octrees are a special case of KD-trees, where the volume is divided by three planes, each being orthogonal to one of the three axes. Both these examples relate to cubes or rectangular cuboids; however, the present application is not restricted to such tree structures and the volumes and sub-volumes may have other shapes in some applications. The partitioning of a volume is not necessarily into two sub-volumes (KD-tree) or eight sub-volumes (octree), but could involve other partitions, including division into non-rectangular shapes or involving non-adjacent sub-volumes.

The present application may refer to octrees for ease of explanation and because they are a popular candidate tree structure for automotive applications, but it will be understood that the methods and devices described herein may be implemented using other tree structures.

Reference is now made to FIG. 1 , which shows a simplified block diagram of a point cloud encoder 10 in accordance with aspects of the present application. The point cloud encoder 10 includes a tree building module 12 for receiving point cloud data and producing a tree (in this example, an octree) representing the geometry of the volumetric space containing point cloud and indicating the location or position of points from the point cloud in that geometry.

The basic process for creating an octree to code a point cloud may include:

-   -   1. Start with a bounding volume (cube) containing the point         cloud in a coordinate system     -   2. Split the volume into 8 sub-volumes (eight sub-cubes)     -   3. For each sub-volume, mark the sub-volume with 0 if the         sub-volume is empty, or with 1 if there is at least one point in         it     -   4. For all sub-volumes marked with 1, repeat (2) to split those         sub-volumes, until a maximum depth of splitting is reached     -   5. For all leaf sub-volumes (sub-cubes) of maximum depth, mark         the leaf cube with 1 if it is non-empty, 0 otherwise

The above process might be described as an occupancy-equals-splitting process, where splitting implies occupancy, with the constraint that there is a maximum depth or resolution beyond which no further splitting will occur. In this case, a single flag signals whether a node is split and hence whether it is occupied by at least one point, and vice versa. At the maximum depth, the flag signals occupancy, with no further splitting possible.

In some implementations, splitting and occupancy are independent such that a node may be occupied and may or may not be split. There are two variations of this implementation:

-   -   1. Split-then-occupied. A signal flag indicates whether a node         is split. If split, then the node must contain a point—that is         splitting implies occupancy. Otherwise, if the node is not to be         split then a further occupancy flag signals whether the node         contains at least one point. Accordingly, when a node is not         further split, i.e. it is a leaf node, the leaf node must have         an associated occupancy flag to indicate whether it contains any         points.     -   2. Occupied-then-split. A single flag indicates whether the node         is occupied. If not occupied, then no splitting occurs. If it is         occupied, then a splitting flag is coded to indicate whether the         node is further split or not.

Irrespective of which of the above-described processes is used to build the tree, it may be traversed in a pre-defined order (breadth-first or depth-first, and in accordance with a scan pattern/order within each divided sub-volume) to produce a sequence of bits from the flags (occupancy and/or splitting flags). This may be termed the serialization or binarization of the tree. As shown in FIG. 1 , in this example, the point cloud encoder 10 includes a binarizer 14 for binarizing the octree to produce a bitstream of binarized data representing the tree.

This sequence of bits may then be encoded using an entropy encoder 16 to produce a compressed bitstream. The entropy encoder 16 may encode the sequence of bits using a context model 18 that specifies probabilities for coding bits based on a context determination by the entropy encoder 16. The context model 18 may be adaptively updated after coding of each bit or defined set of bits. The entropy encoder 16 may, in some cases, be a binary arithmetic encoder. The binary arithmetic encoder may, in some implementations, employ context-adaptive binary arithmetic coding (CABAC). In some implementations, coders other than arithmetic coders may be used.

In some cases, the entropy encoder 16 may not be a binary coder, but instead may operate on non-binary data. The output octree data from the tree building module 12 may not be evaluated in binary form but instead may be encoded as non-binary data. For example, in the case of an octree, the eight flags within a sub-volume (e.g. occupancy flags) in their scan order may be considered a 2⁸−1 bit number (e.g. an integer having a value between 1 and 255 since the value 0 is not possible for a split sub-volume, i.e. it would not have been split if it was entirely unoccupied). This number may be encoded by the entropy encoder using a multi-symbol arithmetic coder in some implementations. Within a sub-volume, e.g. a cube, the sequence of flags that defines this integer may be termed a “pattern”.

Like with video or image coding, point cloud coding can include predictive operations in which efforts are made to predict the pattern for a sub-volume. Predictions may be spatial (dependent on previously coded sub-volumes in the same point cloud) or temporal (dependent on previously coded point clouds in a time-ordered sequence of point clouds).

A block diagram of an example point cloud decoder 50 that corresponds to the encoder 10 is shown in FIG. 2 . The point cloud decoder 50 includes an entropy decoder 52 using the same context model 54 used by the encoder 10. The entropy decoder 52 receives the input bitstream of compressed data and entropy decodes the data to produce an output sequence of decompressed bits. The sequence is then converted into reconstructed point cloud data by a tree reconstructor 56. The tree reconstructor 56 rebuilds the tree structure from the decompressed data and knowledge of the scanning order in which the tree data was binarized. The tree reconstructor 56 is thus able to reconstruct the location of the points from the point cloud (subject to the resolution of the tree coding).

An example partial sub-volume 100 is shown in FIG. 3 . In this example, a sub-volume 100 is shown in two-dimensions for ease of illustration, and the size of the sub-volume 100 is 16×16. It will be noted that the sub-volume has been divided into four 8×8 sub-squares, and two of those have been further subdivided into 4×4 sub-squares, three of which are further divided to 2×2 sub-squares, and one of the 2×2 sub-square is then divided into 1×1 squares. The 1×1 squares are the maximum depth of the tree and represent the finest resolution for positional point data. The points from the point cloud are shown as dots in the figure.

The structure of the tree 102 is shown to the right of the sub-volume 100. The sequence of splitting flags 104 and the corresponding sequence of occupancy flags 106, obtained in a pre-defined breadth-first scan order, is shown to the right of the tree 102. It will be observed that in this illustrative example, there is an occupancy flag for each sub-volume (node) that is not split, i.e. that has an associated splitting flag set to zero. These sequences may be entropy encoded.

Another example, which employs an occupied ≡ splitting condition, is shown in FIG. 4 . FIG. 4 illustrates the recursive splitting and coding of an octree 150. Only a portion of the octree 150 is shown in the figure. A FIFO 152 is shown as processing the nodes for splitting to illustrate the breadth-first nature of the present process. The FIFO 152 outputs an occupied node 154 that was queued in the FIFO 152 for further splitting after processing of its parent node 156. The tree builder splits the sub-volume associated with the occupied node 154 into eight sub-volumes (cubes) and determines their occupancy. The occupancy may be indicated by an occupancy flag for each sub-volume. In a prescribed scan order, the flags may be referred to as the occupancy pattern for the node 154. The pattern may be specified by the integer representing the sequence of occupancy flags associated with the sub-volumes in the pre-defined scan order. In the case of an octree, the pattern is an integer in the range [1, 255].

The entropy encoder then encodes that pattern using a non-binary arithmetic encoder based on probabilities specified by the context model. In this example, the probabilities may be a pattern distribution based on an initial distribution model and adaptively updated. In one implementation, the pattern distribution is effectively a counter of the number of times each pattern (integer from 1 to 255) has been encountered during coding. The pattern distribution may be updated after each sub-volume is coded. The pattern distribution may be normalized, as needed, since the relative frequency of the patterns is germane to the probability assessment and not the absolute count.

Based on the pattern, those child nodes that are occupied (e.g. have a flag=1) are then pushed into the FIFO 152 for further splitting in turn (provided the nodes are not a maximum depth of the tree).

Reference is now made to FIG. 5 , which shows an example cube 180 from an octree. The cube 180 is subdivided into eight sub-cubes. The scan order for reading the flags results in an eight bit string, which can be read as an integer [1, 255] in binary. Based on the scan order and the resulting bit position of each sub-cube's flag in the string, the sub-cubes have the values shown in FIG. 5 . The scan order may be any sequence of the sub-cubes, provided both the encoder and decoder use the same scan order.

As an example, FIG. 6 shows the cube 180 in which the four “front” sub-cubes are occupied. This would correspond to pattern 85, on the basis that the sub-cubes occupied are cubes 1+4+16+64. The integer pattern number specifies the pattern of occupancy in the sub-cubes.

An octree representation, or more generally any tree representation, is efficient at representing points with a spatial correlation because trees tend to factorize the higher order bits of the point coordinates. For an octree, each level of depth refines the coordinates of points within a sub-volume by one bit for each component at a cost of eight bits per refinement. Further compression is obtained by entropy coding the split information, i.e. pattern, associated with each tree node. This further compression is possible because the pattern distribution is not uniform—non-uniformity being another consequence of the correlation.

One potential inefficiency in current systems is that the pattern distribution (e.g. the histogram of pattern numbers seen in previously-coded nodes of the tree) is developed over the course of coding the point cloud. In some cases, the pattern distribution may be initialized as equiprobable, or may be initialized to some other pre-determined distribution; but the use of one pattern distribution means that the context model does not account for, or exploit, local geometric correlation.

In European patent application no. 18305037.6, the present applicants described methods and devices for selecting among available pattern distributions to be used in coding a particular node's pattern of occupancy based on some occupancy information from previously-coded nodes near the particular node. In one example implementation, the occupancy information is obtained from the pattern of occupancy of the parent to the particular node. In another example implementation, the occupancy information is obtained from one or more nodes neighbouring the particular node. The contents of European patent application no. 18305037.6 are incorporated herein by reference.

Reference is now made to FIG. 7 , which shows, in flowchart form, one example method 200 of encoding a point cloud. The method 200 in this example involves recursive splitting of occupied nodes (sub-volumes) and a breadth-first traversal of the tree for coding.

In operation 202, the encoder determines the pattern of occupancy for the current node. The current node is an occupied node that has been split into eight child nodes, each corresponding to a respective sub-cube. The pattern of occupancy for the current node specifies the occupancy of the eight child nodes in scan order. As described above, this pattern of occupancy may be indicated using an integer between 1 and 255, e.g. an eight-bit binary string.

In operation 204, the encoder selects a probability distribution from among a set of probability distributions. The selection of the probability distribution is based upon some occupancy information from nearby previously-coded nodes, i.e. at least one node that is a neighbour to the current node. Two nodes are neighbouring, in some embodiments, if they are associated with respective sub-volumes that share at least one face. In a broader definition, nodes are neighboring if they share at least one edge. In yet a broader definition, two nodes are neighboring if they share at least one vertex. The parent pattern within which the current node is a child node, provides occupancy data for the current node and the seven sibling nodes to the current node. In some implementations, the occupancy information is the parent pattern. In some implementations, the occupancy information is occupancy data for a set of neighbour nodes that include nodes at the same depth level of the tree as the current node, but having a different parent node. In some cases, combinations of these are possible. For example, a set of neighbour nodes may include some sibling nodes and some non-sibling nodes.

Once the probability distribution has been selected, the encoder then entropy encodes the occupancy pattern for the current node using the selected probability distribution, as indicated by operation 206. It then updates the selected probability distribution in operation 208 based on the occupancy pattern, e.g. it may increment the count corresponding to that occupancy pattern. In operation 210, the encoder evaluates whether there are further nodes to code and, if so, returns to operation 202 to code the next node.

The probability distribution selection in operation 204 is to be based on occupancy data for nearby previously-coded nodes. This allows both the encoder and decoder to independently make the same selection. For the below discussion of probability distribution selection, reference will be made to FIG. 8 , which diagrammatically illustrates a partial octree 300, including a current node 302. The current node 302 is an occupied node and is being evaluated for coding. The current node 302 is one of eight children of a parent node 306, which in turn is a child to a grand-parent node (not shown). The current node 302 is divided into eight child nodes 304. The occupancy pattern for the current node 302 is based on the occupancy of the child nodes 304. For example, as illustrated, using the convention that a black dot is an occupied node, the occupancy pattern may be 00110010, i.e. pattern 50.

The current node 302 has sibling nodes 308 that have the same parent node 306. The parent pattern is the occupancy pattern for the parent node 306, which as illustrated would be 00110000, i.e. pattern 48. The parent pattern may serve as the basis for selecting a suitable probability distribution for entropy encoding the occupancy pattern for the current node.

FIG. 9 illustrates a set of neighbors surrounding a current node, where neighbour is defined as nodes sharing a face. In this example, the nodes/sub-volumes are cubes and the cube at the center of the image has six neighbours, one for each face. In an octree, it will be appreciated that neighbours to the current node will include three sibling nodes. It will also include three nodes that do not have the same parent node. Accordingly, occupancy data for some of the neighboring nodes will be available because they are siblings, but occupancy data for some neighbouring nodes may or may not be available, depending on whether those nodes were previously coded. Special handling may be applied to deal with missing neighbours. In some implementations, the missing neighbour may be presumed to be occupied or may be presumed to be unoccupied. It will be appreciated that the neighbour definition may be broadened to include neighbouring nodes based on a shared edge or based on a shared vertex to include additional adjacent sub-volumes in the assessment.

It will be appreciated that the foregoing processes look at the occupancy of nearby nodes in an attempt to determine the likelihood of occupancy of the current node 302 so as to select more suitable context(s) and use more accurate probabilities for entropy coding the occupancy data of the current node 302. It will be understood that the occupancy status of neighbouring nodes that share a face with the current node 302 may be a more accurate assessment of whether the current node 302 is likely to be isolated or not than basing that assessment on the occupancy status of sibling nodes, three of which will only share an edge and one of which will only share a vertex (in the case of an octree). However, the assessment of occupancy status of siblings has the advantage of being modular in that all the relevant data for the assessment is part of the parent node, meaning it has a smaller memory footprint for implementation, whereas assessment of neighbour occupancy status involves buffering tree occupancy data in case it is needed when determining neighbour occupancy status in connection with coding a future nearby node.

The occupancy of the neighbours may be read in a scan order that effectively assigns a value to each neighbour, much like as is described above with respect to occupancy patterns. As illustrated, the neighbouring nodes effectively take values of 1, 2, 4, 8, 16 or 32, and there are therefore 64 (0 to 63) possible neighbour occupancy configurations. This value may be termed the “neighbour configuration” herein. As an example, FIG. 10 illustrates an example of neighbour configuration 15, in which neighbours 1, 2, 4 and 8 are occupied and neighbours 16 and 32 are empty.

In some cases, the two above criteria (parent pattern and neighbour configuration) may be both applied or may be selected between. For example, if neighbours are available then the probability distribution selection may be made based on the neighbouring nodes; however, if one or more of the neighbours are unavailable because they are from nodes not-yet coded, then the probability distribution selection may revert to an analysis based on sibling nodes (parent pattern).

In yet another embodiment, the probability distribution selection may be alternatively, or additionally, be based on the grandparent pattern. In other words, the probability distribution selection may be based on the occupancy status of the uncle nodes that are siblings to the parent node 306.

In yet further implementation, additional or alternative assessments may be factored into the probability distribution selection. For example, the probability distribution selection may look at the occupancy status of neighbour nodes to the parent node, or neighbour nodes to the grand-parent node.

Any two or more of the above criteria for assessing local occupancy status may be used in combination in some implementations.

In the case of a non-binary entropy coder, the occupancy data for the current node may be coded by selecting a probability distribution. The probability distribution contains a number of probabilities corresponding to the number of possible occupancy patterns for the current node. For example, in the case of coding the occupancy pattern of an octree, there are 2⁸−1=255 possible patterns, meaning each probability distribution includes 255 probabilities. In some embodiments, the number of probability distributions may equal the number of possible occupancy outcomes in the selection criteria, i.e. using neighbour, sibling, and/or parent occupancy data. For example, in a case where a parent pattern for an octree is used as the selection criteria for determining the probability distribution to use, there would be 255 probability distributions involving 255 probabilities each. In the case of neighbour configuration, if neighbour is defined as sharing a face, there would be 64 probability distributions with each distribution containing 255 probabilities.

It will be understood that too many distributions may result in slow adaptation due to scarcity of data, i.e. context dilution. Accordingly, in some embodiments, similar patterns may be grouped so as to use the same probability distribution. For example separate distributions may be used for patterns corresponding to fully occupied, vertically-oriented, horizontally-oriented, mostly empty, and then all other cases. This could reduce the number of probability distributions to about five. It will be appreciated that different groupings of patterns could be formed to result in a different number of probability distributions.

Reference is now made to FIG. 11 , which diagrammatically shows one illustrative embodiment of a process 400 of point cloud entropy encoding using parent-pattern-dependent context. In this example, a current node 402 has been split into eight child nodes and its occupancy pattern 404 is to be encoded using a non-binary entropy encoder 406. The non-binary entropy encoder 406 uses a probability distribution selected from one of six possible probability distributions 408. The selection is based on the parent pattern—that is the selection is based on occupancy information from the parent node to the current node 402. The parent pattern is identified by an integer between 1 and 255.

The selection of the probability distribution may be a decision tree that assesses whether the pattern corresponds to a full node (e.g. pattern=255), a horizontal structure (e.g. pattern=170 or 85; assuming the Z axis is vertical), a vertical structure (e.g. pattern=3, 12, 48, 192), a sparsely populated distribution (e.g. pattern=1, 2, 4, 8, 16, 32, 64, or 128; i.e. none of the sibling nodes are occupied), a semi-sparsely populated distribution (total number of occupied nodes among current node and sibling nodes 3), and all other cases. The example patterns indicated for the different categories are merely examples. For example, the “horizontal” category may include patterns involving two or three occupied cubes on the same horizontal level. The “vertical” category may include patterns involving three or four occupied cubes in a wall-like arrangement. It will also be appreciated that finer gradations may be used. For example, the “horizontal” category may be further subdivided into horizontal in the upper part of the cube and horizontal in the bottom part of the cube with different probability distributions for each. Other groupings of occupancy patterns having some correlation may be made and allocated to a corresponding probability distribution. Further discussion regarding grouping of patterns in the context of neighbour configurations, and invariance between neighbour configurations is set out further below.

FIG. 12 shows an illustrative embodiment of a process 500 of point cloud entropy encoding using neighbour-configuration-dependent context. This example assumes the definition of neighbour and neighbour configuration numbering used above in connection with FIG. 9 . This example also presumes that each neighbour configuration has a dedicated probability distribution, meaning there are 64 different probability distributions. A current node 502 has an occupancy pattern 504 to be encoded. The probability distribution is selected based on the neighbouring nodes to the current node 502. That is, the neighbour configuration NC in [0, 63] is found and used to select the associated probability distribution.

It will be appreciated that in some embodiments, neighbour configurations may be grouped such that more than one neighbour configuration uses the same probability distribution based on similarities in the patterns. In some embodiments, the process may use a different arrangement of neighbours for contextualisation (selection) of the distributions. Additional neighbours may be added such as the eight neighbours diagonally adjacent on all three axes, or the twelve diagonally adjacent on two axes. Embodiments that avoid particular neighbours may also be used, for example to avoid using neighbours that introduce additional dependencies in a depth-first scan, or only introduce dependencies on particular axes so as to reduce codec state for large trees.

In this example, the case of NC=0 is handled in a specific manner. If there are no neighbours that are occupied, it may indicate that the current node 502 is isolated. Accordingly, the process 500 further checks how many of the child nodes to the current node 502 are occupied. If only one child node is occupied, i.e. NumberOccupied (NO) is equal to 1, then a flag is encoded indicating that a single child node is occupied and the index to the node is coded using 3 bits. If more than one child node is occupied, then the process 500 uses the NC=0 probability distribution for coding the occupancy pattern.

Reference is now made to FIG. 13 , which shows, in flowchart form, one example method 600 for decoding a bitstream of encoded point cloud data.

In operation 602, the decoder selects one of the probability distributions based on occupancy information from one or more nodes near the current node. As described above, the occupancy information may be a parent pattern from the parent node to the current node, i.e. occupancy of the current node and its siblings, or it may be occupancy of neighbouring nodes to the current node, which may include some of the sibling nodes. Other or additional occupancy information may be used in some implementations.

Once the probability distribution has been selected then in operation 604 the decoder entropy decodes a portion of the bitstream using the selected probability distribution to reconstruct the occupancy pattern for the current node. The occupancy pattern is used by the decoder in reconstructing the tree so as to reconstruct the encoded point cloud data. Once the point cloud data is decoded, it may be output from the decoder for use, such as for rendering a view, segmentation/classification, or other applications.

In operation 606, the decoder updates the probability distribution based on the reconstructed occupancy pattern, and then if there are further nodes to decode, then it moves to the next node in the buffer and returns to operation 602.

Example implementations of the above-described methods have proven to provide a compression improvement with a negligible increase in coding complexity. The neighbour-based selection shows a better compression performance than the parent-pattern based selection, although it has a greater computational complexity and memory usage. In some testing the relative improvement in bits-per-point over the MPEG Point Cloud Test Model is between 4 and 20%. It has been noted that initializing the probability distributions based on a distribution arrived at with test data leads to improved performance as compared to initializing with a uniform distribution.

Some of the above examples are based on a tree coding process that uses a non-binary coder for signaling occupancy pattern. New developments to employ binary entropy coders are presented further below.

In one variation to the neighbour-based probability distribution selection, the number of distributions may be reduced by exploiting the symmetry of the neighbourhood. By permuting the neighbourhood or permuting the pattern distribution, structurally similar configurations having a line of symmetry can re-use the same distribution. In other words, neighbour configurations that can use the same pattern distribution may be grouped into a class. A class containing more than one neighbour configuration may be referred to herein as a “neighbour configuration” in that one of the neighbour configurations effectively subsumes other neighbour configurations by way of reflection or permutation of those other configurations.

Consider, as an example, the eight corner patterns NC∈[21, 22, 25, 26, 37, 38, 41, 42], each representing a symmetry of a corner neighbour pattern. It is likely that these values of NC are well correlated with particular but different patterns of a node. It is further likely that these correlated patterns follow the same symmetries as the neighbour pattern. By way of example, a method may be implemented that re-uses a single distribution to represent multiple cases of NC by way of permuting the probabilities of that distribution.

An encoder derives the pattern number of a node based on the occupancy of the child nodes. The encoder selects a distribution and a permutation function according to the neighbour configuration. The encoder reorders the probabilities contained within the distribution according to the permutation function, and subsequently uses the permuted distribution to arithmetically encode the pattern number. Updates to the probabilities of the permuted distribution by the arithmetic encoder are mapped back to the original distribution by way of an inverse permutation function.

A corresponding decoder first selects the same distribution and permutation function according to the neighbour configuration. A permuted distribution is produced in an identical manner to the encoder, with the permuted distribution being used by the arithmetic decoder to entropy decode the pattern number. The bits comprising the pattern number are then each assigned to the corresponding child.

It should be noted that the same permutation may be achieved without reordering the data of the distribution itself, but rather introducing a level of indirection and using the permutation function to permute the lookup of a given index in the distribution.

An alternative embodiment considers permutations of the pattern itself rather than the distribution, allowing for a shuffling prior to or after entropy encoding/decoding respectively. Such a method is likely to be more amenable to efficient implementation through bit-wise shuffle operations. In this case, no reordering of the distribution is performed by either the encoder or decoder, rather the computation of the encoded pattern number is modified to be pn=Σ_(i=0) ⁷2^(i)c_(σ(i)), where c_(i) is the i-th child's occupancy state, and σ(i) is a permutation function. One such example permutation function

$\sigma = \begin{pmatrix} 0 & 1 & 2 & 3 & 4 & 5 & 6 & 7 \\ 4 & 7 & 6 & 5 & 0 & 3 & 2 & 1 \end{pmatrix}$

allows the distribution for NC=22 to be used for that of NC=41. The permutation function may be used by a decoder to derive a child node's occupancy state from the encoded pattern number using c_(i)└pn/2^(σ(i))┘ mod 2.

Methods to derive the required permutation may be based on rotational symmetries of the neighbour configurations, or may be based on reflections along particular axes. Furthermore, it is not necessary for the permutation to permute all positions according to, for instance, the symmetry; a partial permutation may be used instead. For example, when permuting NC=22 to NC=41, the positions in the axis of symmetry may not be permuted, leading to the mapping

${\sigma = \begin{pmatrix} 0 & 1 & 2 & 3 & 4 & 5 & 6 & 7 \\ 0 & 7 & 2 & 5 & 4 & 3 & 6 & 1 \end{pmatrix}},$

where positions 0, 2, 4, 6 are not permuted. In other embodiments, only the pair 1 and 7 are swapped.

Examples of embodiments based on rotational symmetries and reflections are provided hereafter for the specific case of an octree with six neighbors sharing a common face with the current cube. Without loss of generality, as shown in FIG. 16 , the Z axis extends vertically relative to the direction of viewing the figure. Relative positions of neighbours such as “above” (resp. “below”) should then be understood as along the Z axis in increasing (resp. decreasing) Z direction. The same remark applies for left/right along the X axis, and front/back along the Y axis.

FIG. 16 shows three rotations 2102, 2104 and 2106 along the Z, Y and X axes, respectively. The angle of these three rotations is 90 degrees, i.e. they perform a rotation along their respective axis by a quarter of a turn.

FIG. 17 shows classes of invariance of neighbour configuration under one or several iterations of the rotation 2102 along the Z axis. This invariance is representative of the same statistical behavior of the point cloud geometry along any direction belonging to the XY plane. This is particularly true for the use-case of a car moving on the Earth surface that is locally approximated by the XY plane. A horizontal configuration is the given occupancy of the four neighbors (located at the left, right, front and back of the current cube) independently of the occupancy of the above neighbour (2202) and the below neighbour (2204). The four horizontal configurations 2206, 2208, 2210 and 2212 belong to the same class of invariance under the rotation 2102. Similarly, the two configurations 2214 and 2216 belong to the same class of invariance. There are only six classes (grouped under the set of classes 2218) of invariance under the rotation 2102.

A vertical configuration is the given occupancy of the two neighbors 2202 and 2204 independently of the occupancy of the four neighbours located at the left, right, front and back of the current cube. There are four possible vertical configurations as shown on FIG. 18 . Consequently, if one considers invariance relatively to the rotation 2102 along the Z axis, there are 6×4=24 possible configurations.

The reflection 2108 along the Z axis is shown on FIG. 16 . The vertical configurations 2302 and 2304 depicted on FIG. 18 belong to the same class of invariance under the reflection 2108. There are three classes (grouped under the set of classes 2306) of invariance under the reflection 2108. The invariance under reflection 2108 means that upward and downward directions behave essentially the same in term of point cloud geometry statistics. It is an accurate assumption for a moving car on a road.

If one assumes invariance under both the rotation 2102 and the reflection 2108 there are 18 classes of invariances, resulting from the product of the two sets 2218 and 2306. These 18 classes are represented in FIG. 19 .

Applying further invariance under the two other rotations 2104 and 2106, the two configurations 2401 and 2402 belong to the same class of invariance. Furthermore, the two configurations 2411 and 2412, the two configurations 2421 and 2422, the three configurations 2431, 2432 and 2433, the two configurations 2441 and 2442, the two configurations 2451 and 2452, and finally the two configurations 2461 and 2462 belong to same classes. Consequently, invariance under the three rotations (2102, 2104 and 2106) and the reflection 2108 leads to 10 classes of invariance as shown on FIG. 20 .

From the examples provided hereinabove, assuming or not invariance under three rotations and the reflection, the number of effective neighbour configurations, i.e. classes into which the 64 neighbour configuration may be grouped, is either 64, 24, 18 or 10.

Prior to entropy coding, the pattern undergoes the same transformation, i.e. rotations and reflection, as the neighbour configuration does to belong to one of the invariance classes. This preserves the statistical consistency between the invariant neighbour configuration and the coded pattern.

It will also be understood that during the traversal of a tree, a child node will have certain neighbouring nodes at the same tree depth that have been previously visited and may be causally used as dependencies. For these same-level neighbours, instead of consulting the parent's collocated neighbour, the same-level neighbours may be used. Since the same-level neighbours have halved dimensions of the parent, one configuration considers the neighbour occupied if any of the four directly adjacent neighbouring child nodes (i.e., the four sharing a face with the current node) are occupied.

Entropy Coding Tree Occupancy Patterns Using Binary Coding

The above-described techniques of using neighbour occupancy information for coding tree occupancy were detailed in European patent application no. 18305037.6. The described embodiments focus on using non-binary entropy coding of the occupancy pattern, where a pattern distribution is selected based on neighbour occupancy information. However, in some instances, the use of binary coders can be more efficient in terms of hardware implementation. Moreover, on-the-fly updates to many probabilities may require fast-access memory and computation within the heart of the arithmetic coder. Accordingly, it may be advantageous to find methods and devices for entropy encoding the occupancy pattern using binary arithmetic coders. It would be advantageous to use binary coders if it can be done without significantly degrading compression performance and while guarding against having an overwhelming number of contexts to track.

The use of binary coders in place of a non-binary coder is reflected in the entropy formula:

H(X ₁ ,X ₂ |Y)=H(X ₁ |Y)H(X ₂ |Y,X ₁)

-   -   where X=(X₁, X₂) is the non-binary information to be coded, and         Y is the context for coding, i.e. the neighbour configuration or         selected pattern distribution. To convert non-binary coding of X         into binary coding, the information (X₁, X₂) is split into         information X₁ and X₂ that can be coded separately without         increasing the entropy. To do so, one must code one of the two         depending on the other, here X₂ depending on X₁. This can be         extended to n bits of information in X. For example, for n=3:

H(X ₁ ,X ₂ ,X ₃ |Y)=H(X ₁ |Y)H(X ₂ |Y,X ₁)H(X ₃ |Y,X ₁ ,X ₂)

It will be understood that as the occupancy pattern, i.e. bit sequence X, gets longer there are more conditions for coding later bits in the sequence. For a binary coder (e.g. CABAC) this means a large increase in the number of contexts to track and manage. Using an octree as an example, where the occupancy pattern is an eight-bit sequence b=b₀ . . . b₇, the bit sequence may be split into the eight binary information bits b₀ . . . b₇. The coding may use the neighbour configuration N (or NC) for determining context. Assuming that we can reduce the neighbour configurations to 10 effective neighbour configurations through grouping of neighbour configurations into classes of invariance, as described above, then N is an integer belonging to {0, 1, 2, . . . , 9}. For shorthand, the “classes of invariant neighbour configurations” may be referred to herein, at times, simply as the “neighbour configurations”, although it will be appreciated that this reduced number of neighbour configurations may be realized based on the class-based grouping of neighbour configurations based on invariance.

FIG. 21 illustrates the splitting of an eight-bit pattern or sequence into eight individual bits for binary entropy coding. It will be noted that the first bit of the sequence is encoded based on the neighbour configuration, so there are ten total contexts available. The next bit of the sequence is encoded based on the neighbour configuration and any previously-encoded bits, i.e. bit b₀. This involves 20 total available contexts: obtained as the product of 10 from N and 2 from b₀. The final bit, b₇, is entropy encoded using a context selected from 1280 available contexts: obtained as the product of 10 from N and 128 from the partial pattern given by the previously-encoded bits b₀, . . . , b₆. That is, for each bit the number of contexts (i.e. possible combinations of conditions/dependencies) is the product of the number of neighbour configurations defined (10, in this example, based on grouping of the 64 neighbour configurations into classes), and the number of partial patterns possible from the ordered sequence of n−1 previously-encoded bits (given by 2^(n-1)).

As a result, there are a total of 2550 contexts to maintain in connection with binary coding of the occupancy pattern. This is an excessively large number of contexts to track, and the relative scarcity may cause poor performance because of context dilution, particularly for later bits in the sequence.

Accordingly, in one aspect, the present application discloses encoders and decoders that determine whether the set of contexts can be reduced and, if so, apply a context reduction operation to realize a smaller set of available contexts for entropy coding at least part of an occupancy pattern using a binary coder. In another aspect, the present application further discloses encoders and decoders that apply one or more rounds of state reduction using the same context reduction operations in order to perform effective context selection from a fixed number of contexts. In some implementations, the context reduction is applied a priori in generating look-up tables of contexts and/or algorithmic conditionals that are then used by the encoder or decoder in selecting a suitable context. The reduction is based on a testable condition that the encoder and decoder evaluate to determine which look-up table to select from or how to index/select from that look-up table to obtain a selected context.

Reference is now made to FIG. 22 , which shows, in flowchart form, one example method 3000 for coding occupancy patterns in a tree-based point cloud coder using binary coding. The method 3000 may by implemented by an encoder or a decoder. In the case of an encoder, the coding operations are encoding, and in the case of a decoder the coding operations are decoding. The encoding and decoding is context-based entropy encoding and decoding.

The example method 3000 is for entropy coding an occupancy pattern, i.e. a bit sequence, for a particular node/volume. The occupancy pattern signals the occupancy status of the child nodes (sub-volumes) of the node/volume. In the case of an octree, there are eight child nodes/sub-volumes. In operation 3002, the neighbour configuration is determined. The neighbour configuration is the occupancy status of one or more volumes neighbouring the volume for which an occupancy pattern is to be coded. As discussed above, there are various possible implementations for determining neighbour configuration. In some examples, there are 10 neighbour configurations, and the neighbour configurations for a current volume is identified based on the occupancy of the six volumes that share a face with the current volume.

In operation 3004, an index i to the child nodes of the current volume is set to 0. Then in operation 3006 an assessment is made as to whether context reduction is possible. Different possible context reduction operations are discussed in more detail below. The assessment of whether context reduction is possible may be based, for example, on which bit in the bit sequence is being coded (e.g. the index value). In some cases, context reduction may be possible for later bits in the sequence but not for the first few bits. The assessment of whether context reduction is possible may be based, for example, on the neighbour configuration as certain neighbour configurations may allow for simplifications. Additional factors may be used in assessing whether context reduction is possible in some implementations. For example, an upper bound Bo may be provided as the maximum number of contexts a binary coder can use to code a bit, and if the initial number of contexts to code a bit is higher than Bo then context reduction is applied (otherwise it is not) such that the number of contexts after reduction is at most Bo. Such a bound Bo may be defined in an encoder and/or decoder specification in order to ensure that a software or hardware implementation capable to deal with Bo contexts will always be able to encode and/or decode a point cloud without generating an overflow in term of the number of contexts. Knowing the bound Bo beforehand also allows for anticipating the complexity and the memory footprint induced by the binary entropy coder, thus facilitating the design of hardware. Typical values for Bo are from ten to a few hundred.

If context reduction is determined to be available, then in operation 3008 a context reduction operation is applied. The context reduction operation reduces the number of available contexts in a set of available contexts to a smaller set containing fewer total contexts. It will be recalled, that the number of available contexts may depend, in part, on the bit position in the sequence, i.e. the index, since the context may depend on a partial pattern of previously-coded bits from the bits sequence. In some implementations, the number of contexts available in the set, before reduction, may be based on the number of neighbour configurations multiplied by the number of partial patterns possible with the previously-coded bits. For a bit at index i, where i ranges from 0 to n, the number of partial patterns may be given by 2^(i).

As noted above, in some implementations the context reduction operations are carried out prior to the coding, and the resulting reduced context sets are the context sets available for use by the encoder and decoder during the coding operation. Use and/or selection of the reduced context set during coding may be based on evaluation of one or more conditions precedent to use of those reduced sets that correspond to the conditions evaluated in operation 3006 for determining that the number of contexts can be reduced. For example, in the case of a specific neighbour configuration that permits use of reduced context set, the encoder and/or decoder may first determine whether that neighbour configuration condition is met and then, if so, use the corresponding reduced context set.

In operation 3010, the context for bit b_(i) is determined, i.e. selected from the set (or reduced set, if any) of available contexts based on the neighbour configuration and the partial pattern of previously-coded bits in the bit sequence. The current bit is then entropy encoded by a binary coder using the selected context in operation 3012.

If, in operation 3014, the index i indicates that the currently coded bit is the last bit in the sequence, i.e. that i equals i_(max), then the coding process advances to the next node. Otherwise, the index i is incremented in operation 3016 and the process returns to operation 3006.

It will be appreciated that in some implementations, context selection may not depend on neighbour configuration. In some cases, it may only depend on the partial pattern of previously-coded bits in the sequence, if any.

A simplified block diagram of part of an example encoder 3100 is illustrated in FIG. 23 . In this illustration it will be understood that the occupancy pattern 3102 is obtained as the corresponding volume is partitioned into child nodes and cycled through a FIFO buffer 3104 that holds the geometry of the point cloud. Coding of the occupancy pattern 3102 is illustrated as involving a cascade of binary coders 3106, one for each bit of the pattern. Between at least some of the binary coders 3106 is a context reduction operation 3108 that operates to reduce the available contexts to a smaller set of available contexts.

Although FIG. 23 illustrates a series of binary coders 3106, in some implementations only one binary coder is used. In the case where more than one coder is used, the coding may be (partly) parallelized. Given the context dependence of one bit on preceding bits in the bit sequence, the coding of the pattern cannot necessarily be fully parallelized, but it may be possible to improve pipelining through using cascading binary coders for a pattern to achieve some degree of parallelization and speed improvement.

Context Reduction Operations

The above examples propose that the coding process include a context reduction operation with respect to at least one bit of the occupancy pattern so as to reduce the set of available contexts to a smaller set of available contexts. In this sense, the “context reduction operation” may be understood as identifying and consolidating contexts that may be deemed duplicative or redundant in the circumstances of a particular bit b_(i). As noted above, the reduced context set may be determined in advance of coding and may be provided to the encoder and decoder, and the encoder and decoder determine whether to use the reduced context set based on the same conditions described below for reducing the context set.

Neighbour Configuration Reduction through Screening/Shielding

A first example context reduction operation involves reducing the number of neighbour configurations based on screening/shielding. In principle, the neighbour configuration factors occupancy status of neighbouring volumes into the context selection process on the basis that the neighbouring volumes help indicate whether the current volume or sub-volume is likely to be occupied or not. As the bits associated with sub-volumes in the current volume are decoded, then they are also factored into the context selection; however, the information from nearby sub-volumes may be more significant and more informative than the occupancy information of a neighbouring volume that is located on the other side of the sub-volumes from the current sub-volume. In this sense, the previously-decoded bits are associated with sub-volumes that “screen” or “shield” the neighbouring volume. This may mean that in such circumstances, the occupancy of the neighbouring volume can be ignored since the relevance of its occupancy status is subsumed by the occupancy status of the sub-volumes between the current sub-volume and the neighbouring volume, thereby permitting reduction of the number of neighbour configurations.

Reference is now made to FIG. 24 , which diagrammatically shows an example context reduction operation based on neighbour screening. The example involves coding the occupancy pattern for a volume 3200. The occupancy pattern signals the occupancy status of the eight sub-volumes within the volume 3200. In this example, the four sub-volumes in the top half of the volume 3200 have been coded, so their occupancy status is known. The bit of the occupancy pattern being coded is associated with a fifth sub-volume 3204 that is located in the bottom half of the volume 3200, below the four previously-coded sub-volumes.

The coding in this example includes determining context based on neighbour configuration. The 10 neighbour configurations 3202 are shown. The volume 3200 containing the fifth sub-volume 3204 to be coded is shown in light grey and indicated by reference numeral 3200. The neighbour configurations 3202 are based on the occupancy status of the volumes adjacent to the volume 3200 and sharing a face with it. The neighbouring volumes include a top neighbouring volume 3206.

In this example, the number of neighbour configurations can be reduced from 10 to 7 by ignoring the top neighbouring volume 3206 in at least some of the configurations. As shown in FIG. 24 , three of the four configurations in which the top neighbouring volume 3206 is shown can be subsumed under equivalent configurations that do not factor in the top neighbouring volume 3206, thereby reducing the number of neighbour configurations to 7 total. It may be still be advantageous to keep the configuration showing all six neighbouring volumes since there is no existing 5-volume neighbour configuration that the 6-volume configuration can be consolidated with (having eliminated the 5-element one) meaning that even if the top neighbouring volume is removed a new 5-element neighbour configuration results and no overall reduction in contexts occurs.

The top neighbouring volume 3206 can be eliminated from the neighbour configurations in this example because the context determination for coding of an occupancy bit associated with the fifth sub-volume 3204 will already take into account the occupancy status of the four previously-coded sub-volumes directly above it, which are a better indication of likelihood and directionality of occupancy for the fifth sub-volume than the occupancy status of the more-distant top neighbouring volume 3206.

The above example in which the top neighbouring volume 3206 is screened or shielded by the previously-coded sub-volumes when coding the occupancy bit corresponding to the fifth sub-volume 3204 is only one example. Depending on coding order within the volume 3200 a number of other possible screening/shielding situations may be realized and exploited to reduce the available neighbour configurations.

Reference is now made to FIG. 25 , which shows a second example of screening/shielding. In this example, the occupancy pattern for the volume 3200 is nearly completely coded. The sub-volume to be coded is the eighth sub-volume and is hidden in the figure at the back bottom corner (not visible). In this case, the occupancy status of all seven other sub-volumes has been coded. In particular, the sub-volumes along the top (hence the reduction in neighbour configurations to seven total) and along the right side and front side. Accordingly, in addition to screening the top neighbouring volume, the sub-volumes with previously-coded occupancy bits shield a front neighbouring volume 3210 and a right-side neighbouring volume 3212. This may permit the reduction of neighbour configurations from seven total to five total, as illustrated.

It will be appreciated that the two foregoing examples of shielding are illustrative and that in some cases different configurations may be consolidated to account for different shielding situations. The context reduction operation based on shielding/screening by previously-coded sub-volumes is general and not limited to these two examples, although it will be appreciated that it cannot be applied in the case of the first sub-volume to be coded since it requires that there by at least one previously-coded occupancy bit associated with a nearby sub-volume in order for there to be any shielding/screening.

It will also be appreciated that the degree of shielding/screening to justify neighbour configuration reduction may be different in different implementations. In the two above examples, all four sub-volumes sharing a face with a neighbouring volume were previously-coded before that neighbouring volume was considered shielded/screened and thus removed from the neighbour configurations. In other examples, partial shielding/screening may be sufficient, e.g. from one to three previously-coded sub-volumes that share a face.

Context Reduction through Special Case Handling

There are certain cases in which context reduction may occur without loss of useful information. In the example context determination process described above, the context for coding an occupancy bit is based on the neighbour configuration, i.e. the pattern of occupancy of volumes neighbouring the current volume, and on the partial pattern attributable to the occupancy of sub-volumes in the current volume that were previously coded. That latter condition results in 2⁷=128 contexts to track with respect to the eighth bit in the occupancy pattern bit sequence. Even if neighbour configurations are reduced to five total, this means 640 contexts to track.

The number of contexts is large based on the fact that the previously-coded bits of the bit sequence have an order, and the order is relevant in assessing context. However, in some cases, the order may not contain useful information. For example, in the case where the neighbour configuration is empty, i.e. N₁₀=0, any points within the volume may be presumed to be sparsely populated, meaning they do not have a strong enough directionality to justify tracking separate contexts for different patterns of occupancy in the sibling sub-volumes. In the case of an empty neighbourhood, there is no local orientation or topology to the point cloud, meaning the 2^(j) conditions based on previously-coded bits of the bit sequence can be reduced to j+1 conditions. That is, the context for coding one of the bits of the bit sequence is based on the previously-coded bits, but not on their ordered pattern, just on their sum. In other words, the entropy expression in this special case may be expressed as:

H(b|n)≈H(b ₀|0)H(b ₁0,b ₀)H(b ₂|0,b ₀ +b ₁) . . . H(b ₇|0,b ₀ +b ₁ + . . . +b ₆)

In some implementations, a similar observation may be made with respect to a full neighbour configuration. In some examples, a full neighbour configuration lacks directionality, meaning the order of previously-coded bits need not be taken into account in determining context. In some examples, this context reduction operation may be applied to only some of the bits in the bit sequence, such as some of the later bits in the sequence. In some cases, the application of this context reduction operation to later bits may be conditional on determining that the earlier bits associated with previously-coded sub-volumes were also all occupied.

Statistical-Based Context Reduction

A statistical analysis may be used to reduce contexts through determining which ones lead to roughly the same statistical behavior and then combining them. This analysis may be performed a priori using test data to develop a reduced context set that is then provided to both the encoder and decoder. In some cases, the analysis may be performed on a current point cloud using two-pass coding to develop a custom reduced context set for the specific point cloud data. In some such cases, the mapping from the non-reduced context set to the custom reduced context set may be signaled to the decoder by using a dedicated syntax coded into the bitstream.

Two contexts may be compared through a concept of “distance”. A first context c has a probability p of a bit b being equal to zero, and a second context c′ has a probability p′ of a bit b′ being equal to zero. The distance between c and c′ is given by:

d(c,c′)=|p log₂ p−p′ log₂ p′|+|(1−p)log₂(1−p)−(1−p′)log₂(1−p′)|

Using this measurement of similarity (distance) the contexts may then be grouped in a process, such as:

-   -   1. Start with M₁ contexts and fix a threshold level     -   2. For a given context, regroup into a class all contexts that         have a distance from the given context lower than the threshold         level     -   3. Repeat 2 for all non-regrouped contexts until all are put         into a class     -   4. Label the M₂ classes from 1 to M₂: this results in a brute         force reduction function that maps {1, 2, . . . , M₁]→[1, 2, . .         . , M₂] where M₁≥M₂.

The brute force reduction function for mapping a set of contexts to a smaller set of contexts may be stored in memory to be applied by the encoder/decoder as a context reduction operation during coding. The mapping may be stored as a look-up table or other data structure. The brute force reduction function may be applied only for later bits in the bit sequence (pattern), for example.

Combinations and Sub-Combinations of Context Reduction Operations

Three example context reduction operations are described above. Each of them may be applied individually and independently in some implementations. Any two or more of them may be combined in some implementations. Additional context reduction operations may be implemented alone or in combination with any one or more of the context reduction operations described above.

FIG. 26 shows one example, in flowchart form, of a method 3300 of occupancy pattern binary coding involving combined context reduction. The method 3300 codes the 8-bit binary pattern b₀, b₁, . . . , b₇, given a 10-element neighbour configuration N₁₀ in {0, 1, 2, . . . , 9}. The first condition evaluated is whether the neighbour configuration is empty, i.e. N₁₀=0. If so, then the bits are coded without reference to their order, as indicated by reference numeral 3302. Otherwise, the bits are coded as per normal until bit b₄, at which point the encoder and decoder begin applying brute force context reduction functions, BR_(i), to reduce the number of contexts by mapping the set of contexts defined by the neighbour configuration and the partial pattern of previously-coded bits to a smaller set of contexts having substantially similar statistical outcomes.

In this example, the last two bits, b₆ and b₇, are coded using reduced neighbour configurations, based on shielding/screening.

All functions may be implemented as look-up tables (LUTs) for reducing the size of the set of contexts. In one practical implementation, all the reductions are factorised in reduction functions, i.e. simply LUTs, that take the contexts as input and provide reduced contexts as output. In this example embodiment, the total number of contexts has been reduced from 2550 to 576, with the output size of each reduction function BR_(i) being 70, 106, 110 and 119, respectively.

Context Selection in Systems with Fixed Numbers of Contexts

Each of the previously described context reduction operations may be further used in a compression system with a static (fixed) minimal number of contexts. In such a design, for a given symbol in the 8-bit binary pattern, one or more reduction operations are applied to determine the context probability model with which to encode or decode the symbol.

Impact on Compression Performance

The use of 10 neighbour configurations and non-binary coding provides a compression gain over current implementations of the MPEG test model for point cloud coding. However, the above-proposed use of 10 neighbour configurations with cascaded binary coding using 2550 contexts results in an even better improvement in compression efficiency. Even when context reduction is used, such as using the three techniques detailed above, to reduce the contexts to 576 total, the binary coding compression is still marginally better than implementation using non-binary coding, and much better than the test model. This observation has been shown to be consistent across different test point cloud data.

Reference is now made to FIG. 14 , which shows a simplified block diagram of an example embodiment of an encoder 1100. The encoder 1100 includes a processor 1102, memory 1104, and an encoding application 1106. The encoding application 1106 may include a computer program or application stored in memory 1104 and containing instructions that, when executed, cause the processor 1102 to perform operations such as those described herein. For example, the encoding application 1106 may encode and output bitstreams encoded in accordance with the processes described herein. It will be understood that the encoding application 1106 may be stored on a non-transitory computer-readable medium, such as a compact disc, flash memory device, random access memory, hard drive, etc. When the instructions are executed, the processor 1102 carries out the operations and functions specified in the instructions so as to operate as a special-purpose processor that implements the described process(es). Such a processor may be referred to as a “processor circuit” or “processor circuitry” in some examples.

Reference is now also made to FIG. 15 , which shows a simplified block diagram of an example embodiment of a decoder 1200. The decoder 1200 includes a processor 1202, a memory 1204, and a decoding application 1206. The decoding application 1206 may include a computer program or application stored in memory 1204 and containing instructions that, when executed, cause the processor 1202 to perform operations such as those described herein. It will be understood that the decoding application 1206 may be stored on a computer-readable medium, such as a compact disc, flash memory device, random access memory, hard drive, etc. When the instructions are executed, the processor 1202 carries out the operations and functions specified in the instructions so as to operate as a special-purpose processor that implements the described process(es). Such a processor may be referred to as a “processor circuit” or “processor circuitry” in some examples.

It will be appreciated that the decoder and/or encoder according to the present application may be implemented in a number of computing devices, including, without limitation, servers, suitably-programmed general purpose computers, machine vision systems, and mobile devices. The decoder or encoder may be implemented by way of software containing instructions for configuring a processor or processors to carry out the functions described herein. The software instructions may be stored on any suitable non-transitory computer-readable memory, including CDs, RAM, ROM, Flash memory, etc.

It will be understood that the decoder and/or encoder described herein and the module, routine, process, thread, or other software component implementing the described method/process for configuring the encoder or decoder may be realized using standard computer programming techniques and languages. The present application is not limited to particular processors, computer languages, computer programming conventions, data structures, other such implementation details. Those skilled in the art will recognize that the described processes may be implemented as a part of computer-executable code stored in volatile or non-volatile memory, as part of an application-specific integrated chip (ASIC), etc.

The present application also provides for a computer-readable signal encoding the data produced through application of an encoding process in accordance with the present application.

Certain adaptations and modifications of the described embodiments can be made. Therefore, the above discussed embodiments are considered to be illustrative and not restrictive. 

What is claimed is:
 1. A method of encoding occupancy data for a point cloud to generate a bitstream of compressed point cloud data, wherein occupancy of sub-volumes of a volume is indicated using a bit sequence with each bit of the bit sequence indicating occupancy of a respective sub-volume in a scan order within the volume, and wherein a volume has a plurality of neighbouring volumes, a pattern of occupancy of the neighbouring volumes being a neighbour configuration, the method comprising: for at least one bit in the bit sequence of the volume, determining that a context reduction condition is met and, on that basis, selecting a reduced context set that contains fewer contexts than the product of a count of neighbour configurations and a number of previously-coded bits in the sequence; selecting, for coding said at least one bit, a context from the reduced context set based on an occupancy status of at least some of the neighbouring volumes and at least one previously-coded bit of the bit sequence; and entropy encoding said at least one bit based on the selected context using a binary entropy encoder to produce encoded data for the bitstream.
 2. The method claimed in claim 1, wherein the context reduction condition comprises determining that one or more previously-coded occupancy bits is associated with one or more respective sub-volumes positioned between the sub-volume associated with said at least one bit and said one or more of the neighbouring volumes.
 3. The method claimed in claim 2, wherein the context reduction condition includes determining that four sub-volumes associated with previously-encoded bits share a face with a particular neighbour volume.
 4. The method claimed in claim 2, wherein the context reduction condition includes determining that at least four bits of the bit sequence have been previously coded.
 5. The method claimed in claim 1, wherein determining that the context reduction condition is met comprises determining that said pattern of occupancy of the neighbouring volumes indicates that the plurality of neighbouring volumes is unoccupied.
 6. The method claimed in claim 5, wherein based on the determination that the plurality of neighbouring volumes is unoccupied, the selected reduced context set includes a number of contexts corresponding to the number of previously-coded bits in the bit sequence.
 7. The method claimed in claim 6, wherein based on the determination that the plurality of neighbouring volumes is unoccupied, selecting the context comprises selecting the context based on a sum of previously-coded bits in the bit sequence.
 8. The method claimed in claim 1, wherein the context reduction condition comprises determining that at least a threshold number of bits in the bit sequence have been previously-coded, and wherein the reduced context set comprises a look-up table mapping each possible combination of neighbour configuration and pattern of previously-coded bits in the bit sequence to said fewer contexts.
 9. The method claimed in claim 8, wherein the look-up table is generated based on an iterative grouping of available contexts into a plurality of classes on the basis of determining that a distance measurement between respective pairs of available contexts is less than a threshold value, and wherein each class in the plurality of classes comprises a respective context in the smaller set, and wherein there is an available contexts for each said possible combination of neighbour configuration and pattern of previously-coded bits in the bit sequence.
 10. A method of decoding a bitstream of compressed occupancy data for a point cloud to produce a reconstructed point cloud, wherein occupancy of sub-volumes of a volume is indicated using a bit sequence with each bit of the bit sequence indicating occupancy of a respective sub-volume in a scan order within the volume, and wherein a volume has a plurality of neighbouring volumes, a pattern of occupancy of the neighbouring volumes being a neighbour configuration, the method comprising: for at least one bit in the bit sequence of the volume, determining that a context reduction condition is met and, on that basis, selecting a reduced context set that contains fewer contexts than the product of a count of neighbour configurations and a number of previously-coded bits in the sequence; selecting, for coding said at least one bit, a context from the reduced context set based on an occupancy status of at least some of the neighbouring volumes and at least one previously-coded bit of the bit sequence; and entropy decoding said at least one bit based on the selected context using a binary entropy decoder to produce a reconstructed bit from the bitstream.
 11. The method claimed in claim 10, wherein the context reduction condition comprises determining that one or more previously-coded occupancy bits is associated with one or more respective sub-volumes positioned between the sub-volume associated with said at least one bit and said one or more of the neighbouring volumes.
 12. The method claimed in claim 11, wherein the context reduction condition includes determining that four sub-volumes associated with previously-encoded bits share a face with a particular neighbour volume.
 13. The method claimed in claim 11, wherein the context reduction condition includes determining that at least four bit of the bit sequence have been previously coded.
 14. The method claimed in claim 10, wherein determining that the context reduction condition is met comprises determining that said pattern of occupancy of the neighbouring volumes indicates that the plurality of neighbouring volumes is unoccupied.
 15. The method claimed in claim 14, wherein based on the determination that the plurality of neighbouring volumes is unoccupied, the selected reduced context set includes a number of contexts corresponding to the number of previously-coded bits in the bit sequence.
 16. The method claimed in claim 15, wherein based on the determination that the plurality of neighbouring volumes is unoccupied, selecting the context comprises selecting the context based on a sum of previously-coded bits in the bit sequence.
 17. The method claimed in claim 1, wherein the context reduction condition comprises determining that at least a threshold number of bits in the bit sequence have been previously-coded, and wherein the reduced context set comprises a look-up table mapping each possible combination of neighbour configuration and pattern of previously-coded bits in the bit sequence to said fewer contexts.
 18. The method claimed in claim 17, wherein the look-up table is generated based on an iterative grouping of available contexts into a plurality of classes on the basis of determining that a distance measurement between respective pairs of available contexts is less than a threshold value, and wherein each class in the plurality of classes comprises a respective context in the smaller set, and wherein there is an available contexts for each said possible combination of neighbour configuration and pattern of previously-coded bits in the bit sequence.
 19. The method claimed in claim 11, wherein said at least some of the neighbouring volumes are neighbouring volumes that share at least one face with the volume.
 20. A decoder for decoding a bitstream of compressed occupancy data for a point cloud to produce a reconstructed point cloud, wherein occupancy of sub-volumes of a volume is indicated using a bit sequence with each bit of the bit sequence indicating occupancy of a respective sub-volume in a scan order within the volume, and wherein a volume has a plurality of neighbouring volumes, a pattern of occupancy of the neighbouring volumes being a neighbour configuration, the decoder comprising: a processor; memory; and a decoding application containing instructions executable by the processor that, when executed, cause the processor to: for at least one bit in the bit sequence of the volume, determine that a context reduction condition is met and, on that basis, select a reduced context set that contains fewer contexts than the product of a count of neighbour configurations and a number of previously-coded bits in the sequence; select, for coding said at least one bit, a context from the reduced context set based on an occupancy status of at least some of the neighbouring volumes and at least one previously-coded bit of the bit sequence; and entropy decode said at least one bit based on the selected context using a binary entropy decoder to produce a reconstructed bit from the bitstream. 